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EmoMusicTV_inpainting_eval.py
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"""
Created on Fri Oct 29 17:28:18 2022
@author: Shulei Ji
"""
import torch
import os
import pickle
import muspy
from models.EmoMusicTV import EmoMusicTV
from leadsheet_metrics import compute_metrics
from chord_metrics import getBar
from utils import calc_chords_val,calc_piece_val
device=torch.device("cuda" if torch.cuda.is_available() else "cpu")
def computeGS(chordList,melodyList):
sum_PCHE = 0;sum_DCHE = 0;sum_API = 0;sum_HC = 0;
sum_CC = 0;sum_CHE = 0;sum_CTD = 0;sum_DC = 0;
sum_CTnCTR = 0;sum_PCS = 0;sum_MCTD = 0
for i in range(len(melodyList)):
PCHE,DCHE,API,HC,CC,CHE,CTD,DC,CTnCTR,PCS,MCTD = compute_metrics(chordList[i], melodyList[i])
sum_PCHE += PCHE;sum_DCHE += DCHE;sum_API += API;sum_HC += HC;
sum_CC+=CC;sum_CHE+=CHE;sum_CTD+=CTD;sum_DC+=DC;
sum_CTnCTR += CTnCTR;sum_PCS += PCS;sum_MCTD += MCTD
return sum_PCHE/len(melodyList),sum_DCHE/len(melodyList),sum_API/len(melodyList),sum_HC/len(melodyList),\
sum_CC/len(melodyList),sum_CHE/len(melodyList),sum_CTD/len(melodyList),sum_DC/len(melodyList),\
sum_CTnCTR/len(melodyList),sum_PCS/len(melodyList),sum_MCTD/len(melodyList)
def computeGenVal(chord,all_chord):
CHORDTYPE = {0: 'rest', 1: 'm', 2: 'dim', 3: 'maj', 4: 'm7', 5: '7', 6: 'maj7'}
valence = []
for j in range(len(chord)):
if (j + 1) % 2 == 0:
v1 = CHORDTYPE[chord[j][0:7].index(1)]
v2 = CHORDTYPE[chord[j - 1][0:7].index(1)]
valence.append(calc_chords_val([v1, v2]))
valence_temp=[]
for j in range(len(all_chord)):
if (j + 1) % 2 == 0:
v1 = CHORDTYPE[all_chord[j][0:7].index(1)]
v2 = CHORDTYPE[all_chord[j - 1][0:7].index(1)]
valence_temp.append(calc_chords_val([v1, v2]))
piece_v = calc_piece_val(valence_temp)
return piece_v,valence
def chordRepre2Pitch(chord):
CHORDTYPE = {1: [3, 4], 2: [3, 3], 3: [4, 3], 4: [3, 4, 3], 5: [4, 3, 3], 6: [4, 3, 4]}
chordPitchs=[]
for i in chord:
type=i[:7].index(1)
root=i[7:].index(1)+30
if type==0:
chordPitchs.append([0])
continue
interval=CHORDTYPE[type]
chordPitch=[root]
for j in interval:
chordPitch.append(root+j)
root+=j
chordPitchs.append(chordPitch)
return chordPitchs
def get_bars_Melody(bar_len,melody,i,last_timesign):
bar_cnt=0
piece_start=1
for j in range(len(melody)):
if melody[j]>=99:
last_timesign=melody[j]
elif melody[j]==0 or j==len(melody)-1:
if melody[j]==0 and j==len(melody)-1:
melody_temp=[0]
return last_timesign,melody_temp
bar_cnt+=1
if j==len(melody)-1:
j+=1
if bar_cnt!=1 and (bar_cnt-1)%bar_len==0:
if (bar_cnt-1)//bar_len==(i+1):
melody_temp=melody[piece_start:j]
if melody_temp[-1]>=99:
melody_temp.pop()
return last_timesign,melody_temp
else:
piece_start=j
def generate_GT(melody,chord,i):
chord = chordRepre2Pitch(chord)
barList = getBar(melody)
key_signatures = [muspy.KeySignature(time=0, root=0, mode='major')]
time_signatures = []
melody_notes = []
chord_notes = []
durAccum = 0
barDur = 0
chord_cnt = 0
for j in range(len(melody)):
if melody[j] >= 99:
time_signatures.append(muspy.TimeSignature(time=durAccum, numerator=TIMESIGN[melody[j] - 99][0],
denominator=TIMESIGN[melody[j] - 99][1]))
bar = int(TIMESIGN[melody[j] - 99][0] * 96 / TIMESIGN[melody[j] - 99][1])
continue
if melody[j] == 0:
flag = 0
print(chord_cnt // 2)
bar = barList[chord_cnt // 2]
if chord[chord_cnt] == chord[chord_cnt + 1]:
flag = 1
if len(chord[chord_cnt]) > 1:
for chord_pitch in chord[chord_cnt]:
chord_notes.append(muspy.Note(time=durAccum, pitch=chord_pitch, duration=bar))
chord_cnt += 2
barDur = 0
jj = 0
else:
if melody[j] <= 61:
if melody[j] == 1:
pitch = 0
else:
pitch = melody[j] + 40
else:
duration = DURATION[melody[j] - 62]
if pitch > 0:
melody_note = muspy.Note(time=durAccum, pitch=pitch, duration=duration)
melody_notes.append(melody_note)
durAccum += duration
barDur += duration
if flag == 0:
if barDur >= bar / 2 or (j < len(melody) - 1 and melody[j + 1] in [0, 99, 100, 101, 102, 103, 104, 105, 106]) \
or (jj % 2 == 0 and barDur < bar / 2 and ((j < len(melody) - 2 and melody[j + 2] in [0, 99, 100, 101, 102, 103, 104, 105, 106])
or j == len(melody) - 2)) or j == len(melody) - 1:
if len(chord[chord_cnt]) > 1:
for chord_pitch in chord[chord_cnt]:
chord_notes.append(
muspy.Note(time=durAccum - barDur, pitch=chord_pitch, duration=barDur))
chord_cnt += 1
jj += 1
barDur = 0
metadata = muspy.Metadata(schema_version='0.0',
source_filename="GT_" + str(i) + '.mid',
source_format='midi')
tempos = [muspy.Tempo(time=0, qpm=120.0)]
melody_track = muspy.Track(program=0, is_drum=False, name='', notes=melody_notes)
chord_track = muspy.Track(program=0, is_drum=False, name='', notes=chord_notes)
music_track = []
music_track.append(melody_track);
music_track.append(chord_track)
music = muspy.Music(metadata=metadata, resolution=24, tempos=tempos,
key_signatures=key_signatures, time_signatures=time_signatures, tracks=music_track)
music_disPath = os.path.join(disPath, "inpainting_" + str(i) + '.mid')
muspy.write_midi(music_disPath, music)
import copy
TIMESIGN={0:[6, 8], 1:[4, 4], 2:[9, 8], 3:[2, 4], 4:[3, 4], 5:[2, 2], 6:[6, 4], 7:[3, 2]}
TIMEDICT={72:[6,8],96:[4,4],108:[9,8],48:[2,4],144:[6,4],60:[5,8],84:[7,8],120:[5,4],24:[1,4]}
DURATION={0:2, 1:4, 2:6, 3:8, 4:10, 5:12, 6:16, 7:18, 8:20, 9:22, 10:24, 11:30, 12:32, 13:36, 14:42, 15:44, 16:48, 17:54, 18:56, 19:60,
20:64, 21:66, 22:68, 23:72, 24:78, 25:80, 26:84, 27:90, 28:92, 29:96, 30:102, 31:108, 32:120, 33:126, 34:132, 35:138, 36:144}
def generate(model,melodyList,chordList,valenceList,disPath,generate_num):
if not os.path.exists(disPath):
os.makedirs(disPath)
melody_pre = [i[0] for i in melodyList]
melody_post = [i[1] for i in melodyList]
melodyTemp=copy.deepcopy(melodyList)
melody_all=[]
for i in range(len(melodyTemp)):
melodyTemp[i][0].extend(melodyTemp[i][1])
melody_all.append(melodyTemp[i][0])
GT_PCHE, GT_DCHE, GT_API, GT_HC, GT_CC, GT_CHE, GT_CTD, GT_DC, GT_CTnCTR, GT_PCS, GT_MCTD = \
computeGS([k[24:] for k in chordList[:generate_num]], melody_post[:generate_num])
if GT==True:
for i in range(generate_num):
if i%1==0:
generate_GT(melody_all[i],chordList[i],i)
print(GT_PCHE, GT_DCHE, GT_API, GT_HC, GT_CC, GT_CHE, GT_CTD, GT_DC, GT_CTnCTR, GT_PCS, GT_MCTD)
sum_PCHE = 0;sum_DCHE = 0;sum_API = 0;sum_HC = 0;
sum_CC = 0;sum_CHE = 0;sum_CTD = 0;sum_DC = 0;
sum_CTnCTR = 0;sum_PCS = 0;sum_MCTD = 0
genP_V = [];realP_V = [];barAcc = 0
for i in range(0,generate_num):
print("-------------------------------"+str(i)+"--------------------------------")
valence=valenceList[i]
chord_pre_one=torch.Tensor(chordList[i][:24]).unsqueeze(0).to(device)
melody_pre_one=torch.Tensor(melody_pre[i]).unsqueeze(0).long().to(device)
s_p=torch.nn.functional.one_hot(torch.LongTensor([valence[0]])+2,num_classes=5).unsqueeze(0).float().to(device)
S_B=torch.nn.functional.one_hot(torch.LongTensor(valence[13:])+2,num_classes=5).unsqueeze(0).float().to(device)
timeSign=torch.tensor(melody_post[i][0]).unsqueeze(0).long().to(device)
timeSign=torch.nn.functional.one_hot(timeSign-99,num_classes=8).float()
melody,chord=model.generate(melody_pre_one,chord_pre_one,s_p,S_B,timeSign)
melody.insert(0, int(melody_post[i][0]));melody.insert(1,0);melody.pop()
all_melody=melody_pre[i]
all_melody.extend(melody)
all_chord=chordList[i][:24]
all_chord.extend(chord)
######################## metrics ######################################
if metrics is True:
PCHE, DCHE, API, HC, CC, CHE, CTD, DC, CTnCTR, PCS, MCTD = compute_metrics(chord, melody)
else:
PCHE, DCHE, API, HC, CC, CHE, CTD, DC, CTnCTR, PCS, MCTD = 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0
sum_PCHE += PCHE;sum_DCHE += DCHE;sum_API += API;sum_HC += HC
sum_CC += CC;sum_CHE += CHE;sum_CTD += CTD;sum_DC += DC
sum_CTnCTR += CTnCTR;sum_PCS += PCS;sum_MCTD += MCTD
######################### sentiment ####################################
WholeVal, ValSeq = computeGenVal(chord,all_chord)
genP_V.append(WholeVal)
realP_V.append(valence[0])
print("real_valence: ", valence[0], valence[13:])
print("gen_valence: ", WholeVal, ValSeq)
accB = 0
for k in range(len(ValSeq)):
if ValSeq[k] == valence[13:][k]:
accB += 1
barAcc += (accB / len(ValSeq))
########################## generate MIDI #################################
chord = chordRepre2Pitch(all_chord)
melody=all_melody
barList=getBar(melody)
print(len(chord),melody.count(0),len(barList))
if GEN and i % 1==0:
key_signatures = [muspy.KeySignature(time=0, root=0, mode='major')]
nume = TIMESIGN[melodyList[i][1][0] - 99][0]
deno = TIMESIGN[melodyList[i][1][0] - 99][1]
time_signatures = []
melody_notes = []
chord_notes = []
bar = int(nume * 96 / deno)
durAccum = 0
chordDur = 0
barDur = 0
chord_cnt = 0
for j in range(len(melody)):
if melody[j] >= 99:
time_signatures.append(muspy.TimeSignature(time=durAccum, numerator=TIMESIGN[melody[j] - 99][0],
denominator=TIMESIGN[melody[j] - 99][1]))
bar = int(TIMESIGN[melody[j] - 99][0] * 96 / TIMESIGN[melody[j] - 99][1])
continue
if melody[j] == 0:
if chord[chord_cnt] == chord[chord_cnt + 1]:
if len(chord[chord_cnt]) > 1:
for chord_pitch in chord[chord_cnt]:
chord_notes.append(muspy.Note(time=chordDur, pitch=chord_pitch, duration=bar))
else:
if len(chord[chord_cnt]) > 1:
for chord_pitch in chord[chord_cnt]:
chord_notes.append(
muspy.Note(time=chordDur, pitch=chord_pitch, duration=bar // 2))
if len(chord[chord_cnt + 1]) > 1:
for chord_pitch in chord[chord_cnt+1]:
chord_notes.append(
muspy.Note(time=chordDur + bar // 2, pitch=chord_pitch, duration=bar // 2))
chord_cnt += 2
chordDur += bar
barDur = 0
else:
if melody[j] <= 61:
if melody[j] == 1:
pitch = 0
else:
pitch = melody[j] + 40
else:
duration = DURATION[melody[j] - 62]
if pitch > 0:
melody_note = muspy.Note(time=durAccum, pitch=pitch, duration=duration)
melody_notes.append(melody_note)
durAccum += duration
barDur += duration
metadata = muspy.Metadata(schema_version='0.0',
source_filename=str(i) + '.mid',
source_format='midi')
tempos = [muspy.Tempo(time=0, qpm=120.0)]
melody_track = muspy.Track(program=0, is_drum=False, name='', notes=melody_notes)
chord_track = muspy.Track(program=0, is_drum=False, name='', notes=chord_notes)
music_track = []
music_track.append(melody_track);
music_track.append(chord_track)
music = muspy.Music(metadata=metadata, resolution=24, tempos=tempos,
key_signatures=key_signatures, time_signatures=time_signatures, tracks=music_track)
music_disPath = os.path.join(disPath, "Inpainting_412_" + str(i) + '.mid')
muspy.write_midi(music_disPath, music)
cnt = 0
for i in range(len(realP_V)):
if genP_V[i] == realP_V[i]:
cnt += 1
return (round(GT_PCHE, 4), round(sum_PCHE / generate_num, 4)), \
(round(GT_DCHE, 4), round(sum_DCHE / generate_num, 4)), \
(round(GT_API, 4), round(sum_API / generate_num, 4)), \
(round(GT_HC, 4), round(sum_HC / generate_num, 4)), \
(round(GT_CC, 4), round(sum_CC / generate_num, 4)), \
(round(GT_CHE, 4), round(sum_CHE / generate_num, 4)), \
(round(GT_CTD, 4), round(sum_CTD / generate_num, 4)), \
(round(GT_DC, 4), round(sum_DC / generate_num, 4)), \
(round(GT_CTnCTR, 4), round(sum_CTnCTR / generate_num, 4)), \
(round(GT_PCS, 4), round(sum_PCS / generate_num, 4)), \
(round(GT_MCTD, 4), round(sum_MCTD / generate_num, 4)), \
round(cnt / len(realP_V), 4), round(barAcc / generate_num, 4)
if __name__ == '__main__':
GEN = True
metrics = True
GT=True
generate_num = 1000
disPath='./generated_music/'
# load models
resume="./save_models/your_pretrained_models.pth"
model = EmoMusicTV(N=3,h=4,m_size=8,c_size=48,d_ff=256,hidden_size=256,latent_size=128,dropout=0.2).to(device)
dict=torch.load(resume,map_location=device)
model.load_state_dict(dict['model'])
model.eval()
file = open("./data/All_124_melody_test.data", 'rb')
test_melody = pickle.load(file)
file = open("./data/All_124_chord_test.data", 'rb')
test_chord = pickle.load(file)
file = open("./data/All_124_valence_test.data", 'rb')
test_valence = pickle.load(file)
print(len(test_melody), len(test_chord), len(test_valence))
PCHE, DCHE, API, HC, CC, CHE, CTD, DC, CTnCTR, PCS, MCTD,acc,accBar=generate(model,test_melody[:],test_chord[:],test_valence[:],disPath,generate_num)
print(PCHE, DCHE, API, HC, CC, CHE, CTD, DC, CTnCTR, PCS, MCTD)
print(acc, accBar)